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Optimizing a Pseudo Financial Factor Model with Support Vector Machines and Genetic Programming

机译:优化具有支持向量机和遗传编程的伪金融因子模型

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We compare the effectiveness of Support Vector Machines (SVM) and Tree-based Genetic Programming (GP) to make accurate predictions on the movement of the Dow Jones Industrial Average (DJIA). The approach is facilitated though a novel representation of the data as a pseudo financial factor model, based on a linear factor model for representing correlations between the returns in different assets. To demonstrate the effectiveness of the data representation the results are compared to models developed using only the monthly returns of the inputs. Principal Component Analysis (PCA) is initially used to translate the data into PC space to remove excess noise that is inherent in financial data. The results show that the algorithms were able to achieve superior investment returns and higher classification accuracy with the aid of the pseudo financial factor model. As well, both models outperformed the market benchmark, but ultimately the SVM methodology was superior in terms of accuracy and investment returns.
机译:我们比较支持向量机(SVM)和基于树的遗传编程(GP)的有效性,以准确预测Dow Jones工业平均水平(DJIA)的运动。虽然数据作为伪金融因子模型的新颖表示,但基于用于在不同资产中的返回之间的相关性的线性因子模型的线性因子模型,促进了这种方法。为了展示数据表示的有效性,将结果与仅使用输入的每月返回产生的模型进行比较。主成分分析(PCA)最初用于将数据转换为PC空间以除去财务数据中固有的多余噪声。结果表明,借助于伪金融因素模型,该算法能够实现卓越的投资回报和更高的分类准确性。同样,两种型号都表现出市场基准,但最终,SVM方法在准确性和投资回报方面优越。

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